Fuzzy Rule-Based Section Forming for Mining Robotic Excavation Error Compensation
Jie Tian,
Zhen Liu,
Zhaowei Li
et al.
Abstract:Based on the automatic forming technology for mine roadway sections and the error measurement technology for boom-type roadheaders, this study primarily uses a fuzzy neural network with a proportional-integral-derivative (PID) controller to compensate for pose errors. By modeling and analyzing the body position and section affecting the boundary accuracy of a boom-type roadheader, boundary compensation is performed according to the error between the preset and actual sections. The compensation accuracy is then… Show more
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